模拟和大数据在调整建筑能源模型中的挑战

J. Sanyal, J. New
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引用次数: 17

摘要

EnergyPlus是旗舰建筑能源模拟软件,用于模拟住宅和商业机构的整个建筑能源消耗。一个典型的程序输入通常有数百个,有时甚至数千个参数,这些参数通常由建筑专家调整以“得到正确的”。这个过程有时需要几个月。“Autotune”是一项正在进行的研究工作,利用机器学习技术自动调整EnergyPlus输入描述的输入参数。即使使用自动化,运行调优模拟集成所面临的计算挑战也是令人生畏的,并且需要使用超级计算机使其及时易于处理。在本文中,我们描述了问题的范围,特别是面临和克服的技术挑战,以及在采用EnergyPlus引擎时开发/正在开发的软件基础设施,该引擎主要设计用于在台式机上运行,并将其扩展到在共享内存超级计算机(Nautilus)和分布式内存超级计算机(Frost和Titan)上运行。参数化模拟产生的数据数量级为几十到几百tb。我们描述了用于简化和减少这些数据工作流程中的瓶颈的方法,这些数据随后可用于调优工作,并可公开用于开放科学。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simulation and big data challenges in tuning building energy models
EnergyPlus is the flagship building energy simulation software used to model whole building energy consumption for residential and commercial establishments. A typical input to the program often has hundreds, sometimes thousands of parameters which are typically tweaked by a buildings expert to “get it right”. This process can sometimes take months. “Autotune” is an ongoing research effort employing machine learning techniques to automate the tuning of the input parameters for an EnergyPlus input description of a building. Even with automation, the computational challenge faced to run the tuning simulation ensemble is daunting and requires the use of supercomputers to make it tractable in time. In this paper, we describe the scope of the problem, particularly the technical challenges faced and overcome, and the software infrastructure developed/in development when taking the EnergyPlus engine, which was primarily designed to run on desktops, and scaling it to run on shared memory supercomputers (Nautilus) and distributed memory supercomputers (Frost and Titan). The parametric simulations produce data in the order of tens to a couple of hundred terabytes. We describe the approaches employed to streamline and reduce bottlenecks in the workflow for this data, which is subsequently being made available for the tuning effort as well as made available publicly for open-science.
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